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Micro-Expression Classification based on Landmark Relations with Graph Attention Convolutional Network

机译:基于图形关注卷积网络的地标关系的微表达分类

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Facial micro-expressions are brief, rapid, spontaneous gestures of the facial muscles that express an individual’s genuine emotions. Because of their short duration and subtlety, detecting and classifying these micro-expressions by humans and machines is difficult. In this paper, a novel approach is proposed that exploits relationships between landmark points and the optical flow patch for the given landmark points. It consists of a two-stream graph attention convolutional network that extracts the relationships between the landmark points and local texture using an optical flow patch. A graph structure is built to draw-out temporal information using the triplet of frames. One stream is for node feature location, and the other one is for a patch of optical-flow information. These two streams (node location stream and optical flow stream) are fused for classification. The results are shown on, CASME II and SAMM, publicly available datasets, for three classes and five classes of micro-expressions. The proposed approach outperforms the state-of-the-art methods for 3 and 5 categories of expressions.
机译:面部微表达是短暂的,快速,自发的面部肌肉,表达个人真正的情绪。由于它们短的持续时间和微妙,难以检测和分类这些微表达式。在本文中,提出了一种新的方法,该方法利用给定地标点的地标点和光学流贴片之间的关系。它包括一个双流图注意卷积网络,其使用光学流贴片提取地标点和局部纹理之间的关系。构建图形结构以使用帧的三联体抽出时间信息。一个流是节点特征位置,另一个流是用于光流信息的补丁。这两个流(节点位置流和光流量流)被融合用于分类。结果显示在Casme II和SAMM,公共可用数据集,三类和五类微表达式。所提出的方法优于3和5类表达式的最先进的方法。

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